Computed tomography (CT) derived radiomics to predict post-operative disease recurrence in gastric cancer; a systematic review and meta-analysis

IF 1.5 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Current Problems in Diagnostic Radiology Pub Date : 2024-07-09 DOI:10.1067/j.cpradiol.2024.07.011
Niall J. O'Sullivan , Hugo C. Temperley , Michelle T. Horan , Benjamin M. Mac Curtain , Maeve O'Neill , Claire Donohoe , Narayanasamy Ravi , Alison Corr , James F.M. Meaney , John V. Reynolds , Michael E. Kelly
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Abstract

Introduction

Radiomics offers the potential to predict oncological outcomes from pre-operative imaging in order to identify ‘high risk’ patients at increased risk of recurrence. The application of radiomics in predicting disease recurrence provides tailoring of therapeutic strategies. We aim to comprehensively assess the existing literature regarding the current role of radiomics as a predictor of disease recurrence in gastric cancer.

Methods

A systematic search was conducted in Medline, EMBASE, and Web of Science databases. Inclusion criteria encompassed retrospective and prospective studies investigating the use of radiomics to predict post-operative recurrence in ovarian cancer. Study quality was assessed using the QUADAS-2 and Radiomics Quality Score tools.

Results

Nine studies met the inclusion criteria, involving a total of 6,662 participants. Radiomic-based nomograms demonstrated consistent performance in predicting disease recurrence, as evidenced by satisfactory area under the receiver operating characteristic curve values (AUC range 0.72 - 1). The pooled AUCs calculated using the inverse-variance method for both the training and validation datasets were 0.819 and 0.789 respectively

Conclusion

Our review provides good evidence supporting the role of radiomics as a predictor of post-operative disease recurrence in gastric cancer. Included studies noted good performance in predicting their primary outcome. Radiomics may enhance personalised medicine by tailoring treatment decision based on predicted prognosis.

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预测胃癌术后复发的计算机断层扫描(CT)放射组学;系统综述
导言:放射组学可通过术前成像预测肿瘤预后,从而确定复发风险较高的 "高危 "患者。应用放射组学预测疾病复发可为治疗策略提供针对性。我们旨在全面评估有关放射组学作为胃癌复发预测指标的现有文献。纳入标准包括使用放射组学预测卵巢癌术后复发的回顾性和前瞻性研究。研究质量采用 QUADAS-2 和放射组学质量评分工具进行评估。基于放射组学的提名图在预测疾病复发方面表现一致,接收者操作特征曲线下面积值(AUC范围为0.72 - 1)令人满意。结论我们的综述为放射组学作为胃癌术后复发的预测指标提供了很好的证据。所纳入的研究在预测主要结果方面表现良好。放射组学可根据预测预后调整治疗决策,从而提高个性化医疗水平。
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来源期刊
Current Problems in Diagnostic Radiology
Current Problems in Diagnostic Radiology RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
3.00
自引率
0.00%
发文量
113
审稿时长
46 days
期刊介绍: Current Problems in Diagnostic Radiology covers important and controversial topics in radiology. Each issue presents important viewpoints from leading radiologists. High-quality reproductions of radiographs, CT scans, MR images, and sonograms clearly depict what is being described in each article. Also included are valuable updates relevant to other areas of practice, such as medical-legal issues or archiving systems. With new multi-topic format and image-intensive style, Current Problems in Diagnostic Radiology offers an outstanding, time-saving investigation into current topics most relevant to radiologists.
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